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Experimental Demonstration of Enhanced Quantum Tomography Via Quantum Reservoir Processing

Quantum Science and Technology(2025)

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Abstract
Quantum machine learning is a rapidly advancing discipline that leverages the features of quantum mechanics to enhance the performance of computational tasks. Quantum reservoir processing, which allows efficient optimization of a single output layer without precise control over the quantum system, stands out as one of the most versatile and practical quantum machine learning techniques. Here we experimentally demonstrate a quantum reservoir processing approach for continuous-variable state reconstruction on a bosonic circuit quantum electrodynamics platform. The scheme learns the true dynamical process through a minimum set of measurement outcomes of a known set of initial states. We show that the map learnt this way achieves high reconstruction fidelity for several test states, offering significantly enhanced performance over using map calculated based on an idealised model of the system. This is due to a key feature of reservoir processing which accurately accounts for physical non-idealities such as decoherence, spurious dynamics, and systematic errors. Our results present a valuable tool for robust bosonic state and process reconstruction, concretely demonstrating the power of quantum reservoir processing in enhancing real-world applications.
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要点】:本文通过量子储层处理技术实现了连续变量量子态的高保真重建,展示了量子机器学习在提升真实量子系统性能方面的重要应用。

方法】:研究者利用量子储层处理方法在光子电路量子电动力学平台上对量子态进行重建,通过最小化测量结果学习系统的真实动态过程。

实验】:实验在bosonic circuit quantum electrodynamics平台上完成,使用一组已知初始状态的测量数据学习动态过程,结果表明该方法对于多个测试态实现了高重建保真度,相比基于理想化系统模型的映射计算方法有显著性能提升。